Course:

ME 539: Introduction to Scientific Machine Learning

Instructor: Prof. Ilias Bilionis

Description

This course bridges the gap between traditional engineering and modern data science. Starting from the foundations of Probability Theory, we explore how to quantify uncertainty and build predictive models using Machine Learning. From Bayesian Regression and Deep Learning to Physics-Informed Neural Networks, students learn to create and fit their own models, focusing on first principles and real-world engineering applications.

What you will learn

Grading & Assessment

Grading Policy

Your final grade is based 100% on eight (8) homework assignments. These assignments are hybrid, covering:

Generative AI Policy

Teaching Assistant:

Scientific Machine Learning & AI for Engineering

Join Prof. Bilionis’ Substack community for deep dives into uncertainty quantification, AI-driven simulations, and the latest laboratory updates.

Ilias Bilionis